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. 2021 Aug 28;27(32):5306–5321. doi: 10.3748/wjg.v27.i32.5306

Table 3.

Key characteristics of the main studies using radiomics and machine learning algorithms on magnetic resonance images to predict outcome other than pathologic complete response after neoadjuvant chemoradiotherapy in patients with locally advanced rectal cancer

Ref.
Study design (n of sites)
Number of patients
Prediction task
CT phase (n of CT scanner)
Segmentation method
ML algorithm
Data powering algorithm
Validation
Performance
Bibault et al[85], 2018 Retrospective (3) 99 pCR after nCRT Unenhanced (3) Manual – 3D DNN Radiomics and clinical features Internal validation (cross-validation) AUC: 0.72
Hamerla et al[86], 2019 Retrospective (1) 169 pCR after nCRT Unenhanced (1) Manual – 3D RF Radiomics features Internal validation (cross-validation) Accuracy: 0.87
Yuan et al[87], 2020 Retrospective (1) 91 pCR after nCRT Unenhanced (1) Manual – 3D RF Radiomics features Internal validation (train/validation split) Accuracy: 0.84
Wu et al[90], 2019 Retrospective (1) 102 MSI status Venous phase - DECT (2) Manual - 3 2D ROIs for lesion LR Radiomics features Internal validation (train/validation /test split) AUC: 0.87
Fan et al[91], 2019 Retrospective (1) 100 MSI status Portal venous phase (2) Semiautomatic – 3D NB Radiomics features Internal validation (cross-validation) AUC: 0.75
Wu et al[92], 2020 Retrospective (1) 173 KRAS mutation Portal venous phase (3) Manual + DL – single 2D ROI LR Radiomics features Internal validation (train/test split) C-index: 0.83
Wang et al[94], 2019 Retrospective (1) 411 Prediction of survival Unenhanced (1) Manual – 3D 10-F CV Radiomics and clinical features Internal validation (cross-validation) C-index: 0.73

In all studies, three-dimensional manual segmentation of the primary tumor was performed to extract radiomic features, with the exceptions of Alvarez-Jimenez et al[113] (rectal wall), van Griethuysen et al[60] (semiautomatic segmentation) and Yang et al[115] (two-dimensional manual segmentation). ANN: Artificial neural network; AUC: Area under the receiver operating characteristic curve; CNN: Convolutional neural network; DWI: Diffusion-weighted imaging; EMLM: Ensemble machine learning model; GR: Good responders; LASSO: Least absolute shrinkage and selection operator; RF: Random forest; LR: Logistic regression; ML: Machine learning; MRI: Magnetic resonance imaging; QDA: Quadratic discriminant analysis; SVM: Support vector machine; T1w: T1-weighted; T2w: T2-weighted; TRG: Tumor regression grade.

10F-CV: 10-fold cross-validation; CT: Computed tomography; DECT: Dual-energy computed tomography; DNN: Deep neural network; LR: Logistic regression; ML: Machine learning; MSI: Microsatellite instability; NB: Naive Bayes; nCRT: Neoadjuvant chemoradiotherapy; pCR: Pathologic complete response; RF: Random forest.